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Point cloud quality requirements for Scan-vs-SIM based automated construction progress monitoring

机译:基于Scan-vs-SIM的自动施工进度监控的点云质量要求

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Significant research effort has been focusing on automated construction progress monitoring using the Scan-vs-BIM method. In recent years, various scanning technologies were applied with different success. The general finding is that a higher quality of the point cloud leads to improved monitoring results. Most published works in the relevant area recognise density and accuracy as the main quality parameters of a point cloud. Data quality has been addressed in various ways, by defining arbitrary levels of quality parameters, by evaluating the quality parameters of a point cloud, and by defining parameters of a scanning plan in order to achieve a desired level of quality. However, the relation between the levels of point cloud quality and the success of Scan-vs-BIM element identification is still an open question. This paper presents results of a research in which we defined a more accurate and applicable metric for evaluation of the quality of a point cloud for construction progress monitoring using a Scan-vs-BIM method. The proposed methodology includes the definition of building element classes and the definition of point cloud quality parameters, which have been selected by observing the most significant criteria that influence the success of building element identification. Using a test BIM, around hundred point clouds have been generated with combinations of influencing parameter values. A statistical method was applied to determine the point cloud quality criteria for assuring correct identification of each class of elements. The quality criteria were then validated using three different scanning methods. Results show that the defined quality criteria can be effectively applied in deciding on the appropriate scanning methodology for successful Scan-vs-BIM identification.
机译:大量的研究工作一直集中在使用Scan-vs-BIM方法进行自动施工进度监控。近年来,各种扫描技术的应用取得了不同的成功。总的发现是点云的质量越高,监控结果就越好。相关领域中大多数已发表的著作都将密度和精度视为点云的主要质量参数。通过定义任意级别的质量参数,通过评估点云的质量参数以及通过定义扫描计划的参数以达到期望的质量水平,已经以各种方式解决了数据质量。但是,点云质量水平与Scan-vs-BIM元素识别成功之间的关系仍然是一个悬而未决的问题。本文介绍了一项研究结果,其中我们定义了一种更准确和适用的度量标准,用于使用Scan-vs-BIM方法评估施工进度监控的点云的质量。拟议的方法包括建筑元素类别的定义和点云质量参数的定义,这些是通过观察影响建筑元素识别成功的最重要标准来选择的。使用测试BIM,已经通过影响参数值的组合生成了大约一百个点云。应用统计方法确定点云质量标准,以确保正确识别每类元素。然后使用三种不同的扫描方法来验证质量标准。结果表明,所定义的质量标准可以有效地应用于确定成功进行Scan-vs-BIM识别的适当扫描方法。

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